Nonlocality and Nonlinearity Implies Universality in Operator Learning
Samuel Lanthaler, Zongyi Li, Andrew M. Stuart

TL;DR
This paper demonstrates that combining nonlocality and nonlinearity in neural operator architectures guarantees their universal approximation capability, simplifying existing models and opening avenues for new operator learning methods.
Contribution
It introduces a minimal neural operator architecture called the averaging neural operator (ANO) and proves its universal approximation property using only a single Fourier mode.
Findings
The ANO architecture achieves universal approximation with minimal nonlocal ingredients.
Reducing Fourier modes in FNO still retains universal approximation capabilities.
Numerical experiments provide insights into the roles of channel width and Fourier modes.
Abstract
Neural operator architectures approximate operators between infinite-dimensional Banach spaces of functions. They are gaining increased attention in computational science and engineering, due to their potential both to accelerate traditional numerical methods and to enable data-driven discovery. As the field is in its infancy basic questions about minimal requirements for universal approximation remain open. It is clear that any general approximation of operators between spaces of functions must be both nonlocal and nonlinear. In this paper we describe how these two attributes may be combined in a simple way to deduce universal approximation. In so doing we unify the analysis of a wide range of neural operator architectures and open up consideration of new ones. A popular variant of neural operators is the Fourier neural operator (FNO). Previous analysis proving universal operator…
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Taxonomy
TopicsNeural Networks and Applications · Model Reduction and Neural Networks
